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Maximum Likelihood Estimation-Based Joint Sparse Representation for the Classification of Hyperspectral Remote Sensing Images

机译:基于最大似然估计的高光谱遥感图像分类的关节稀疏表示

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摘要

A joint sparse representation (JSR) method has shown superior performance for the classification of hyperspectral images (HSIs). However, it is prone to be affected by outliers in the HSI spatial neighborhood. In order to improve the robustness of JSR, we propose a maximum likelihood estimation (MLE)-based JSR (MLEJSR) model, which replaces the traditional quadratic loss function with an MLE-like estimator for measuring the joint approximation error. The MLE-like estimator is actually a function of coding residuals. Given some priors on the coding residuals, the MLEJSR model can be easily converted to an iteratively reweighted JSR problem. Choosing a reasonable weight function, the effect of inhomogeneous neighboring pixels or outliers can be dramatically reduced. We provide a theoretical analysis of MLEJSR from the viewpoint of recovery error and evaluate its empirical performance on three public hyperspectral data sets. Both the theoretical and experimental results demonstrate the effectiveness of our proposed MLEJSR method, especially in the case of large noise.
机译:联合稀疏表示(JSR)方法显示出高光谱图像(HSIS)的分类的卓越性能。但是,它容易受到HSI空间邻居中的异常值的影响。为了提高JSR的稳健性,我们提出了最大的似然估计(MLE)的JSR(MLEJSR)模型,其用MLE样估计器替换传统的二次损耗函数,用于测量关节近似误差。 MLE样估计器实际上是编码残差的函数。在编码残差上给出一些前瞻,Mlejsr模型可以很容易地转换为迭代重新重量的JSR问题。选择合理的权重函数,可以大大减少不均匀的相邻像素或异常值的效果。从恢复错误的角度来看,我们对Mlejsr的理论分析,并在三个公共超光谱数据集中评估其实证性能。理论和实验结果均证明了我们提出的Mlejsr方法的有效性,特别是在噪音大的情况下。

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